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首页> 外文期刊>IEEE Robotics & Automation Magazine >Machine Learning for Active Gravity Compensation in Robotics: Application to Neurological Rehabilitation Systems
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Machine Learning for Active Gravity Compensation in Robotics: Application to Neurological Rehabilitation Systems

机译:机器人中活性重力补偿机器学习:神经系统康复系统的应用

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摘要

Robotic rehabilitation for poststroke therapies is an emerging new domain of application for robotics with proven success stories and clinical studies. New robotic devices and software applications are hitting the market, with the aim of assisting specialists carrying out physical therapies and even patients exercising at home. Rehabilitation robots are designed to assist patients performing repetitive movements with their hemiparetic limbs to regain motion. A successful robotic device for rehabilitation demands high workspace and force feedback capabilities similar to a human physiotherapist. These desired features are usually achieved at the expense of other important requirements, such as transparency and backdrivability, degrading the overall human-machine interaction experience.
机译:失败疗法的机器人康复是一个新兴的新域名,用于成功案例和临床研究的机器人学。新的机器人设备和软件应用正在击中市场,目的是协助携带物理疗法的专家甚至在家里锻炼的患者。康复机器人旨在帮助患者与其偏瘫肢体进行重复运动以重新获得运动。用于康复的成功的机器人设备要求高工作空间和力量与人类物理治疗师相似的反馈能力。通常以牺牲其他重要要求(例如透明度和积等数)为代价而实现这些所需的特征,降低整体人机交互经验。

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